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首页> 外文期刊>Journal of Turbulence >Traffic Sign Recognition Using Kernel Extreme Learning Machines With Deep Perceptual Features
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Traffic Sign Recognition Using Kernel Extreme Learning Machines With Deep Perceptual Features

机译:交通标志识别使用内核极端学习机具有深入感知功能

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Traffic sign recognition plays an important role in autonomous vehicles as well as advanced driver assistance systems. Although various methods have been developed, it is still difficult for the state-of-the-art algorithms to obtain high recognition precision with low computational costs. In this paper, based on the investigation on the influence that color spaces have on the representation learning of convolutional neural network, a novel traffic sign recognition approach called DP-KELM is proposed by using a kernel-based extreme learning machine (KELM) classifier with deep perceptual features. Unlike the previous approaches, the representation learning process in DP-KELM is implemented in the perceptual Lab color space. Based on the learned deep perceptual feature, a kernel-based ELM classifier is trained with high computational efficiency and generalization performance. Through the experiments on the German traffic sign recognition benchmark, the proposed method is demonstrated to have higher precision than most of the state-of-the-art approaches. In particular, when compared with the hinge loss stochastic gradient descent method which has the highest precision, the proposed method can achieve a comparable recognition rate with significantly fewer computational costs.
机译:交通标志识别在自动车辆以及先进的驾驶员辅助系统中起着重要作用。尽管已经开发了各种方法,但最先进的算法仍然难以获得具有低计算成本的高识别精度。在本文的基础上,基于调查彩色空间对卷积神经网络表示学习的影响,通过使用基于内核的极限学习机(KELM)分类器来提出一种名为DP-KELM的新颖交通标志识别方法深刻的感知功能。与先前的方法不同,DP-Kelm中的表示学习过程在感知实验室颜色空间中实现。基于学习的深度感知特征,基于内核的ELM分类器具有高计算效率和泛化性能的培训。通过对德国交通标志识别基准的实验,所提出的方法被证明比大多数最先进的方法具有更高的精度。特别是,与具有最高精度的铰链损耗随机梯度下降方法相比,所提出的方法可以实现可比的识别率,其计算成本明显更少。

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